Gaussian mixture models (GMMs) are a very useful and widely popular approach for clustering, but they have several limitations, such as low outliers tolerance and assumption of data normality. Another problem in relation to finite mixture models in general is the inference of an optimal number of mixture components. An excellent approach to solve this problem is model selection, which is the process of choosing the optimal number of mixture components that ensures the best clustering performance. In this thesis, we attempt to tackle both aforementioned issues: we propose using minimum message length (MML) as a model selection criterion for multivariate bounded asymmetric Student’s t-mixture model (BASMM). In fact, BASMM is chosen as an al...
Clustering is task of assigning the objects into different groups so that the objects are more simil...
In this thesis, we study the approximation capabilities, model estimation and selection properties, ...
In the current thesis several selected aspects of the two related latent class models; finite mixtur...
Gaussian mixture models (GMMs) are a very useful and widely popular approach for clustering, but th...
Data is ever increasing with today’s many technological advances in terms of both quantity and dimen...
In this dissertation, we extend several relatively new developments in statistical model selection a...
Mixture models have been widely used as a statistical learning paradigm in various unsupervised mach...
With the exponential growth of data in all formats, and data categorization rapidly becoming one of ...
Modeling with mixtures is a powerful method in the statistical toolkit that can be used for represen...
Data clustering is a fundamental unsupervised learning approach that impacts several domains such as...
A novel unsupervised Bayesian learning framework based on asymmetric Gaussian mixture (AGM) statisti...
Lately, the enormous generation of databases in almost every aspect of life has created a great dema...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Hidden Markov (chain) models using finite Gaussian mixture models as their hidden state distribution...
Markov and hidden Markov models (HMMs) provide a special angle to characterize trajectories using th...
Clustering is task of assigning the objects into different groups so that the objects are more simil...
In this thesis, we study the approximation capabilities, model estimation and selection properties, ...
In the current thesis several selected aspects of the two related latent class models; finite mixtur...
Gaussian mixture models (GMMs) are a very useful and widely popular approach for clustering, but th...
Data is ever increasing with today’s many technological advances in terms of both quantity and dimen...
In this dissertation, we extend several relatively new developments in statistical model selection a...
Mixture models have been widely used as a statistical learning paradigm in various unsupervised mach...
With the exponential growth of data in all formats, and data categorization rapidly becoming one of ...
Modeling with mixtures is a powerful method in the statistical toolkit that can be used for represen...
Data clustering is a fundamental unsupervised learning approach that impacts several domains such as...
A novel unsupervised Bayesian learning framework based on asymmetric Gaussian mixture (AGM) statisti...
Lately, the enormous generation of databases in almost every aspect of life has created a great dema...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Hidden Markov (chain) models using finite Gaussian mixture models as their hidden state distribution...
Markov and hidden Markov models (HMMs) provide a special angle to characterize trajectories using th...
Clustering is task of assigning the objects into different groups so that the objects are more simil...
In this thesis, we study the approximation capabilities, model estimation and selection properties, ...
In the current thesis several selected aspects of the two related latent class models; finite mixtur...